CROSS-REFERENCE TO RELATED APPLICATIONS
FIELD
[0002] This application relates to the field of batteries and more particularly to automotive
batteries.
BACKGROUND
[0003] The performance requirements of batteries have changed with evolving vehicle technologies.
While previously batteries may have supported cranking and relatively limited internal
vehicle electrical function (i.e. radio, air conditioning, lights, etc.), battery
requirements have shifted over time.
[0004] For example, many recent vehicles are equipped with technology which shuts down the
engine when the vehicle is at rest/stopped (for example, at a stoplight). This feature
is known as "start-stop technology" and aims to reduce fuel consumption and idle emissions.
In hybrid vehicles, the engine also shuts down, which may have the start-stop function
fully integrated without the ability to be disabled. Typically, a vehicle will continue
to provide internal functions (air conditioning/heat, radio, etc.) while the engine
is turned off during a start-stop event. When the brake starts to be released or the
clutch is starting to be engaged, the engine is restarted.
[0005] Further, as advanced systems and functionality become increasingly common, the likelihood
of depending on the batteries is increased for more advanced and often safety-critical
loads. For example, lane-assist and to a greater extent autonomous steering technology
may require the vehicle system to provide consistent power to a steering module within
the vehicle.
[0006] These and other evolving functionalities may create strain on the battery. Different
batteries may be more suited to support these functionalities than others. Further,
these functionalities and subsequent strain may contribute to changes in anticipated
life of a battery within a vehicle. In other words, supporting these functionalities
may impact battery life.
[0007] Current systems may not adequately predict battery life. Current systems may likewise
may be inadequate at properly identifying a suitable battery.
SUMMARY
[0008] Accordingly, an improved system for selecting a battery is disclosed. The system
and method may evaluate and provide a recommendation for the best battery for a particular
vehicle, used in a particular way, in a particular environment. In other words, the
disclosed may provide a battery recommendation based off the intended usage case as
well as environmental factors of the vehicle. This recommendation will, in various
embodiments, be backed by quantitative data outputted by a model where selection criteria
will then be in place to select the proper battery. The system may be used in new
vehicles (OEM setting) or in used vehicles (for example, in replacement batteries).
In addition, it may be used in a single vehicle or in a group of vehicles - for example
Zip Code ViO (Vehicle in Operation) Analysis (for IAM) or "All SUVs" (for an OE).
The system may allow for better predictions for warranty purposes and performance
characteristics. The system may also allow for comparison of battery performance,
for example, among a range of battery technologies, product lines (including for example
manufacturers, plants), and group sizes. The system may also be able to provide different
usage cases and control strategy (how the OE manages alternator and battery) cases
and their effect on the life of a particular battery (ex. Soccer Mom vs. Traveling
Salesman vs. Off-Road Driver). The life of the particular battery may be given, in
various embodiments, relative to the life of other batteries.
[0009] Disclosed according to various embodiments is a battery longevity predictor comprising:
a plurality of battery factors; a plurality of electrical load factors; a plurality
of cycling or crank data; an output; wherein the output comprises a battery longevity
predictor based on the plurality of battery factors, plurality of vehicle loads, and
the plurality of cycling or crank data. Further disclosed is a battery longevity predictor
comprising a battery simulator having the plurality of battery factors, the plurality
of vehicle loads, and/or the plurality of cycling or crank data. Further disclosed
is a battery longevity predictor wherein the electrical load factors comprise driver
factors. Further disclosed is a battery longevity predictor wherein the driver factors
comprise driving patterns and driving context. Further disclosed is a battery longevity
predictor wherein the electrical load factors comprise environmental factors. Further
disclosed is a battery longevity predictor wherein the battery simulator comprises
a vehicle simulation and performance analysis.
[0010] Disclosed herein according to various examples of embodiments is a vehicle comprising:
a vehicle system having a system having a number of loads defining a load profile;
a validated battery comprising one or more batteries which can fulfill the load profile;
an integrated battery selected from the validated battery, the integrated battery
selected for longevity relative to other batteries; wherein the validated battery
is provided within the vehicle. Further disclosed is a vehicle system wherein the
load profile comprises battery size. Further disclosed is a vehicle system wherein
the load profile comprises environmental factors. Further disclosed is a vehicle system
wherein the load profile comprises driver factors. Further disclosed is a vehicle
system wherein the load profile comprises vehicle loads. Further disclosed is a vehicle
system wherein longevity is evaluated relative to a number of factors, which may include
Amp-hr throughput over time, average and peak current over time, state of charge over
time, depth of discharge over time, and Fuel Economy.
[0011] Disclosed is a battery selector comprising: a plurality of battery factors; a plurality
of electrical load factors; a plurality of cycling or crank data; an output; wherein
the output comprises a battery selection based on the plurality of battery factors,
plurality of vehicle loads, and the plurality of cycling or crank data. Further disclosed
is a battery selector further comprising a battery simulator having the plurality
of battery factors, the plurality of vehicle loads, and/or the plurality of cycling
or crank data. Further disclosed is a battery selector wherein the electrical load
factors comprise driver factors. Further disclosed is a battery selector wherein the
driver factors comprise driving patterns and driving context. Further disclosed is
a battery selector wherein the electrical load factors comprise environmental factors.
Further disclosed is a battery selector wherein the battery simulator comprises a
vehicle simulation and performance analysis. Further disclosed is a battery selector
further comprising a display, wherein the display shows the battery selection. Further
disclosed is a battery selector wherein the driver factors comprise user input driver
factors.
[0012] Further advantages and aspects can be understood from the details provided further
herein.
BRIEF DESCRIPTION OF THE FIGURES
[0013]
FIG. 1 is a diagram of a vehicle, according to various examples of embodiments.
FIG. 2 is a diagram of a number of factors impacting battery longevity, according
to various examples of embodiments.
FIG. 3 shows a system and method for determining electrical load impact on battery
performance according to various examples of embodiments.
FIG. 4 is diagram of a vehicle load simulator for use with the system and method herein,
according to various examples of embodiments.
FIG. 5 shows a number of examples of electrical loads which may impact battery longevity,
according to various examples of embodiments.
FIG. 6 shows a number of vehicle types for use with the system and method herein,
according to various examples of embodiments.
FIG. 7 shows a diagram of the system and method herein for battery selection relative
to vehicle function.
FIG. 8 shows a workflow for use of the system and method herein, according to various
examples of embodiments.
[0014] It should be understood that the drawings are not necessarily to scale. In certain
instances, details that are not necessary to the understanding to the invention or
render other details difficult to perceive may have been omitted. It should be understood,
of course, that the invention is not necessarily limited to the particular embodiments
illustrated herein.
DETAILED DESCRIPTION
[0015] Turning to the Figures, a system and method is shown which helps to identify battery
longevity and/or what battery may be best suited to a particular vehicle/driver/etc.
[0016] The present disclosure may be understood to relate to (but not be limited to) use
of a battery in a vehicle environment. In various embodiments, the battery may be
a lithium ion or other advanced battery. FIG. 1 shows a cut-away of a vehicle 103
having a battery system 101 for electrical communication with the vehicle 103. The
battery system 101 may include an energy storage component 107 which may comprise
one or more battery modules (109, 111). The vehicle 103 may further comprise an engine
115, alternator 117, ignition system 119, and control module 123 which may have a
processor 125 and memory 127. The energy storage component 107 may electrically couple
to the vehicle's electrical system by way of a bus 113. This may allow for powering
of vehicle functionality including electrical devices such as the vehicle display
129 and advanced vehicle functionality 105.
[0017] A vehicle electrical system may be included in an automotive vehicle 103 or the like.
In some embodiments, the control system 124 may control operation of the battery system
101 and/or the electrical devices 104. For example, in an automotive vehicle 103,
the control system 124 may include a battery management system (BMS) and/or a vehicle
control unit (VCU).
[0018] Vehicle 103 may be understood to be operating within an environment 100. Further,
an operator or driver 102 may be understood to operate the vehicle 103. Battery system
101 functionality may be understood to be influenced by vehicle 103 features (including,
for example, vehicle functionality 105). Further, battery system 101 functionality
(such as the support of vehicle requirements) may be influenced by environment 100
and driver 102 behaviors or usage patterns.
[0019] FIG. 2 shows a number of tables 201 describing a number of different example non-limiting
factors which may influence battery (for example, but not limited to, batteries 109
and 111) life or performance. As shown in FIG. 2, a number of factors can influence
power requirements in a vehicle/demands on a battery. At an over-arching level, these
factors may include high electrical demand (or electrical demands generally) 203,
user behavior (driver factors) 202, and environment 200. Combinations of these factors
or scenarios (for example, potential scenarios that lead to more capable technologies)
may include a number of states 237. In various embodiments, states 237 may include
only environment factors 200, only user behavior (driver) factors 202, combinations
of environment 200 and user behavior (driver) 202 factors, electrical demand 203 only,
electrical demand 203 and environment 200 factors combined, user behavior 202 and
electrical demand 203 combined, or combinations of all three (electrical demand 203,
user behavior 202 and environment 200).
[0020] Moving to the bottom half of FIG. 2, a number of influencing factors 233 and applications
235 are shown for the three factors (203, 202, 200) described above. For example,
electrical demand (in various embodiments, high electrical demand) 203 may further
comprise a number of influencing factors 233, such as functionalities built into the
vehicle itself at production (OE on board), any automotive enhancements (AM enhancement),
or other load management strategy situation. These features may find application 235
or may be relevant to particular vehicles such as diesel vehicles, plow trucks, minivans,
luxury vehicles, and/or start/stop equipped vehicles.
[0021] Also as shown in FIG. 2, user behavior (driver factors) 202 may also impact demands
on a battery (again for example, but not limited to, batteries 109 and 111). This
may include influencing factors 233 such as driving patterns, any devices the user
has plugged into the vehicle (plug ins), and whether the user is driving the vehicle
in an urban/suburban/ or rural setting (driver context). The application 235 or circumstances
(for example but not limited to the application of the influencing factors) under
which a driver would use the vehicle may be to get groceries (milk run), frequently
drive long distances (road warrior), to school (student), as an avid vehicle enthusiast,
or in traffic.
[0022] In addition, FIG. 2 also details environmental factors 200 ("environment I operate
within") which may impact vehicle electrical loads and in turn battery performance
over time. These factors 233 may include, but not be limited to, temperature (both
ambient and temperature under the vehicle hood), road condition, and battery placement
in the vehicle. In application, this may include pressure, desert environment, southern
environment, and whether a heat shield is present.
[0023] Various impacts on electrical loads and battery usage such as, but not limited to,
those outlined above may impact battery longevity. These and other features over time
may assist in understanding battery longevity under these and other conditions.
[0024] FIG. 3 may be understood to illustrate a system of modeling impacts on battery longevity.
In various embodiments, the system may comprise a vehicle simulation component 359
and "Real" Electrical Load component which may further comprise a battery simulator
model 369 and performance analysis 371 portions. The system may be understood to comprise
factors discussed more herein such as, but not limited to, battery factors, vehicle
loads, and/or the plurality of cycling or crank data. Battery factors 505 (for example,
as shown in FIG 7) may comprise amperage hour throughput (Ah), depth of discharge
(DOD), state of charge (SOC), peak current and battery contribution to fuel economy.
[0025] For example, in FIG. 3 a vehicle simulation 359 may initially be ran in order to
gain preliminary insight into per-vehicle preliminary loads. Vehicle simulation 359
may comprise a regeneration power profile which may be defined by the vehicle as a
function of time. Vehicle simulation 359 may also comprise a vehicle load simulator
357. Vehicle load simulator may comprise use of an accessory and/or consideration
of vehicle accessories. Vehicle load simulator 357 may consider load as a function
of time and vehicle state. Vehicle simulation may further comprise vehicle level validation
359. The vehicle level validation 359 may take modify or be modified by the vehicle
level validation 359. Vehicle level validation 459 may comprise average and peak load
current.
[0026] Next, simulated or actual electrical loads from the vehicle may be used to evaluate
effect on battery performance and life. Regeneration profile 355 and/or vehicle load
simulator 357 may be seen to feed into a power profile 361 and/or state profile 363
of a vehicle. Further, battery calibration 365 data may be obtained. These data may
be seen to feed into a battery simulator model 369.
[0027] The battery simulator model may be seen to comprise a control strategy and equivalent
circuit model. A battery simulator model 369 may be ran and performance analysis 371
may be evaluated. The battery performance analysis 371 may include battery ampere
hours, battery peak state of charge, depth of discharge, and fuel economy. These may
be compared with vehicle-level validation 359, which may include average and peak
battery current. Standard aging for the battery may likewise be modeled. Finally,
an expected life of a new battery under the conditions may be obtained in various
embodiments. In various embodiments, the system and method may evaluate and output
cycling life of a battery.
[0028] In FIG. 3, the battery simulator 369 and performance analysis 371 relationship can
be seen for production of an expected life of a new battery. In various embodiments,
the system may predict anticipated cycling life of a battery. Again, this may include
incorporation of known battery aging models.
[0029] In FIG. 4, more details regarding the vehicle load simulator 357 are provided. In
various embodiments, a vehicle profile 381 and electrical load control strategy 383
may be combined to produce a vehicle load simulator 357. FIG. 4 shows some simplified
factors which may impact the vehicle load simulator. As shown, the vehicle profile
381 and electrical control strategy 383 may be used in the vehicle load simulator
357.
[0030] The system and method may further comprise a system and method for obtaining estimates
of vehicle load, which may, in various embodiments, be obtaining readings from an
actual vehicle. Here again a number of scenarios may be present (vehicle type, season,
time). Initial data and/or vehicle profiles may then be used. Next, the system may
allow for selection of a number of drive simulations. The simulated loads may be based
on known vehicle loads (see, e.g. FIG. 5).
[0031] FIG. 5 shows a variety of electrical loads, including those associated with advanced
battery functionality, may impact battery functionality and longevity within a vehicle.
The electrical load may be understood as devices 401. Depending on the vehicle (vehicle
profiles 403 which may likewise correlate to vehicle profiles 381), these electrical
loads (for example, device(s) 401) may not be part of the vehicle function. For example,
autopilot may not be part of vehicle 1 and vehicle 2, but may be part of vehicle 3.
Load (Device 401) presence may also be dependent on season and/or time (for example,
season and time profiles 405). For example, energy load management may be present
in vehicle 2 during all seasons, whereas biometrics may be present in vehicle 1 or
vehicle 2 in night, summer, or winter but not the day.
[0032] A number of different vehicle types 411 are shown in FIG. 6. Each vehicle type may
be usable (or optimally usable) with a particular type of battery under differing
conditions. For example, conventional internal combustion engines (ICE) vehicles have
different electrical requirements than, for example, ICE vehicles with start-stop
functionality, vehicles with dual/auxiliary battery networks, hybrid vehicles. Some
vehicles may have multiple batteries, for example, and start-stop only vehicles may
have two batteries. Therefore, vehicle profile and/or electrical load control strategy
(for example, 381, 383) may change based on the vehicle type 411.
[0033] FIG. 7 shows a summary or workflow of an example system and method herein 501, according
to various examples of embodiments. A general repository of electrical load factors
503 may be consulted and an identification of particular needs based on factors such
as vehicle, user characteristics (driver factors), and environment (environmental
factors) may be made. In addition, information about battery types and functionality
(battery factors 505) and cycling and/or crank data (for existing batteries) 507 may
likewise be provided. In various embodiments, cranking may be considered a load. Then,
based on these inputs, in various embodiments, the system may provide an output 509
such as a recommended battery or may provide feedback to a user regarding battery
longevity under those particular conditions.
[0034] In various embodiments, the system and method herein may comprise one or more algorithms
(for example, as shown in the Figures) comprising one or more software components
and one or more computers. For example, the output 509 may be provided on a screen
or interface while battery factors 505, cycling and/or crank data 507, and electrical
load factors 503 may be provided in one or more databases or distributed systems.
Further, information or factors such as, but not limited to, those provided in the
Figures may be inputted or otherwise provide into one or more databases for access
by the system and method herein. For example, in one or more non-limiting embodiments,
simulators and analysis components (such as, but not limited to, 357, 369, 371, 509)
may comprise software programs and components such as profiles (for example but not
limited to 355, 361, 363, 503, 505, 507) may comprise certain data.
[0035] The system and method herein may be provided in various settings. For example, system
and method herein may allow for an output 509 or interface at a point of sale or as
part of business management or operation tools (such as, but not limited to, in inventory
management, inventory planning, etc.). In various embodiments, output 509 may comprise
a display 511. In various embodiments, users may provide certain data (user input
513), for example, as driver information as part of electrical load factors 503 in
FIG. 7. This may be understood to comprise, for example, but not limited to, factors
such as user behavior (driver factors) 202, environment factors 200, or electrical
demand 203 factors as seen in FIG. 2. This and other information may allow for an
output 509 such as a recommended battery. For example, the output 509 may be a screen
or display 511 in a variety of contexts. For example, the display 511 could be provided
at a point of sale (recommending a battery for user purchase, as a non-limiting example),
in warehouse (for inventory management, as a non-limiting example), in a business
management context (such as but not limited to inventory planning), or other context
(such as but not limited to warranty planning). In various embodiments, the display
511 may comprise a user interface or further mechanism for accepting user input 513.
This may comprise, for example, a display 509 on a mobile device having a touchscreen
for user input 513 (while mobile device is provided, one or more computers having
a suitable input mechanism generally should be contemplated as within the scope of
the invention). It should be understood the foregoing are non-limiting examples of
contexts and use cases which may advantageously be used with the system and method
herein and further advantages and applications may be understood by those in the field.
The system and method herein should be understood to provide advantages in a variety
of contexts including but not limited to in both aftermarket and OEM settings.
[0036] FIG. 8 shows another system 551 for use with the system and method herein, according
to various examples of embodiments. A vehicle 555 having a vehicle system including
the system and method herein according to various examples of embodiments may be seen.
The vehicle 555 may have a number of vehicle loads 559. The vehicle loads 559 may
comprise consideration of environmental factors (for example, temperature and humidity
may impact battery functionality) as well as consideration of user factors (routine
highway driving, etc.). Further, the vehicle loads 559 may also comprise size, user
impact, loads, and battery management system. A load profile may be understood to
comprise the vehicle loads 559. Next, the load profile (vehicle loads 559) may be
used to select a group of batteries (validated batteries) 561 which may be known to
support the load profile. Next, the system provides for battery support 553 attributes.
These attributes may include particular vehicle load support advantages including
Amp-hr throughput over time, average and peak current over time, and SOC (state of
charge), and DOD (depth of discharge) curves over time. Fuel economy may likewise
be considered. A battery from the validated battery group may be selected for integration
into the vehicle (which may be understood as a battery selected for its ability to
support the identified loads) as an integrated battery 557 based on battery support
attributes, in various embodiments. For example, some electrical loads would better
fit an AGM battery versus an EFB battery. Certain batteries will have performance
characteristics (for example Amp-hr throughput over time, average and peak current
over time, and SOC (state of charge)/DOD (depth of discharge) curves over time) than
others. Therefore, the integrated battery 557 may comprise a fit between the battery
functionality (Battery Support) and vehicle/scenario requirements (vehicle loads or
load profile). In various embodiments, the integrated battery 557 may allow for improved
support of cranking or cycling than another battery. Further, in various embodiments,
the integrated battery 557 may allow for a smaller battery use with the vehicle. By
decreasing battery size, vehicle weight and performance may be improved.
[0037] Further, the system and method herein may allow for improvements to the battery recommendation
or longevity estimate. For example, as further data is collected (for example, but
not limited to, electrical load factors or data 203, user behavior factors or data
202, and/or environmental factors or data 200, etc.) the results may lead to updates
and improved predictions through their use in the system and method herein. In addition,
the system and method herein may update the battery recommendation based on updates
to battery technology or the field of known batteries.
[0038] In various embodiments, the selection criteria to provide a battery recommendation
may be generated from one or more quantitative outputs from one or more models as
shown in the Figures. The model outputs may include, but are not limited to, Amp-hr
throughput over time, average and peak current over time, and SOC (state of charge)/DOD
(depth of discharge) curves over time, and fuel economy. This may be correlated, for
example, but not limited to, as battery factors 505 and/or battery support 553.
[0039] Multiple objectives may be achieved with the outputs and/or system and method herein:
- (1) Performance pairing of one or more batteries, for example, but not limited to,
based off of A-hr Throughput, Average and Peak Power/Current, and the SOC (State of
Charge)/DOD (Depth of Discharge), of the battery, for example, all over time
- (2) Warranty & Expected Remaining Life of one or more batteries, for example, but
not limited to, based off the DOD (depth of discharge)
- (3) A recommended battery pairing may be selected based off these and other outputs
compared among various technologies, group sizes, and usage cases.
[0040] The system and method herein may advantageously allow for improved fit between battery
and battery usage (vehicle, use case-including user behaviors and environment as disclosed
herein, etc.). This may provide advantages in both OEM and aftermarket scenarios for
selection of a suitable battery.
[0041] In various embodiments, the disclosed system and method may provide a battery recommendation
based off the intended usage case, electrical loads, as well as environmental factors
of the vehicle. This recommendation may therefore advantageously be backed by quantitative
data outputted by a model where selection criteria may then be in place to select
an optimum battery or identify battery longevity. The system may be used in new vehicles
(OEM setting) or in used vehicles (for example, in replacement batteries). In addition
the disclosed system and method may be used in a single vehicle or in a group of vehicles
- for example Zip Code ViO (Vehicle in Operation) Analysis (for IAM) or "All SUVs"
(for an OE).
[0042] The system and method herein may allow for improved predictions of battery longevity
for warranty purposes and battery performance characteristics. The system may also
allow for comparison of battery performance, for example, among a range of battery
technologies, product lines (including for example manufacturers, plants), and group
sizes. The system may also be able to provide battery recommendations and battery
longevity predictions across different usage cases and control strategy (for example,
but not limited to, vehicle management of alternator and battery) cases and their
effect on the life of a particular battery (for example, across use cases or driver
behavior such as Soccer Mom vs. Traveling Salesman vs. Off-Road Driver).
[0043] In other words, the disclosed system and method herein may have a number of outputs.
One may recommend a particular battery given the battery characteristics and requirements
of the situation (e.g. vehicle, environment, operator, etc.). Another may predict
the lifespan of using the recommended battery (for example but not limited to, for
warranty purposes). Finally, the system and method herein may be used to predict longevity
of an existing battery within the vehicle. These three uses or outputs are non-limiting
examples; other uses and outputs may be understood as within the scope of this disclosure.
[0044] It should be noted that references to relative positions (e.g., "top" and "bottom"
or "first" and "second") in this description are merely used to identify various elements
as are oriented in the Figures. It should be recognized that the orientation of particular
components may vary greatly depending on the application in which they are used.
[0045] For the purpose of this disclosure, the term "coupled" means the joining of two members
directly or indirectly to one another. Such joining may be stationary in nature or
moveable in nature. Such joining may be achieved with the two members or the two members
and any additional intermediate members being integrally formed as a single unitary
body with one another or with the two members or the two members and any additional
intermediate members being attached to one another. Such joining may be permanent
in nature or may be removable or releasable in nature.
[0046] It is also important to note that the construction and arrangement of the system,
methods, and devices as shown in the various examples of embodiments is illustrative
only. Although only a few embodiments have been described in detail in this disclosure,
those skilled in the art who review this disclosure will readily appreciate that many
modifications are possible (e.g., variations in sizes, dimensions, structures, shapes
and proportions of the various elements, values of parameters, mounting arrangements,
use of materials, colors, orientations, etc.) without materially departing from the
novel teachings and advantages of the subject matter recited. For example, elements
shown as integrally formed may be constructed of multiple parts or elements show as
multiple parts may be integrally formed, the operation of the interfaces may be reversed
or otherwise varied, the length or width of the structures and/or members or connector
or other elements of the system may be varied, the nature or number of adjustment
positions provided between the elements may be varied (e.g. by variations in the number
of engagement slots or size of the engagement slots or type of engagement). The order
or sequence of any algorithm, process, or method steps may be varied or re-sequenced
according to alternative embodiments. Likewise, some algorithm or method steps described
may be omitted, and/or other steps added. Other substitutions, modifications, changes
and omissions may be made in the design, operating conditions and arrangement of the
various examples of embodiments without departing from the spirit or scope of the
present inventions.
[0047] While this invention has been described in conjunction with the examples of embodiments
outlined above, various alternatives, modifications, variations, improvements and/or
substantial equivalents, whether known or that are or may be presently foreseen, may
become apparent to those having at least ordinary skill in the art. Accordingly, the
examples of embodiments of the invention, as set forth above, are intended to be illustrative,
not limiting. Various changes may be made without departing from the spirit or scope
of the invention. Therefore, the invention is intended to embrace all known or earlier
developed alternatives, modifications, variations, improvements and/or substantial
equivalents.
[0048] The technical effects and technical problems in the specification are exemplary and
are not limiting. It should be noted that the embodiments described in the specification
may have other technical effects and can solve other technical problems.
[0049] Aspects of the method described herein are implemented on a software system running
on a computer system. To this end, the methods and system may be implemented in, or
in association with, a general-purpose software package or a specific purpose software
package. As a specific, non-limiting example, the device could be a battery and/or
vehicle in communication with a cloud storage database and/or mobile device. As another
specific, non-limiting example, the device could be a mobile device in communication
with a cloud storage database.
[0050] The software system described herein may include a mixture of different source codes.
The system or method herein may be operated by computer-executable instructions, such
as but not limited to, program modules, executable on a computer. Examples of program
modules include, but are not limited to, routines, programs, objects, components,
data structures, and the like which perform particular tasks or implement particular
instructions. The software system may also be operable for supporting the transfer
of information within a network.
[0051] While the descriptions may include specific devices or computers, it should be understood
the system and/or method may be implemented by any suitable device (or devices) having
suitable computational means. This may include programmable special purpose computers
or general-purpose computers that execute the system according to the relevant instructions.
The computer system or portable electronic device can be an embedded system, a personal
computer, notebook computer, server computer, mainframe, networked computer, workstation,
handheld computer, as well as now known or future developed mobile devices, such as
for example, a personal digital assistant, cell phone, smartphone, tablet computer,
mobile scanning device, and the like. Other computer system configurations are also
contemplated for use with the communication system including, but not limited to,
multiprocessor systems, microprocessor-based or programmable electronics, network
personal computers, minicomputers, smart watches, and the like. Preferably, the computing
system chosen includes a processor suitable for efficient operation of one or more
of the various systems or functions or attributes of the communication system described.
[0052] The system or portions thereof may also be linked to a distributed computing environment,
where tasks are performed by remote processing devices that are linked through a communication
network(s). To this end, the system may be configured or linked to multiple computers
in a network including, but not limited to, a local area network, wide area network,
wireless network, and the Internet. Therefore, information, content, and data may
be transferred within the network or system by wireless means, by hardwire connection,
or combinations thereof. Accordingly, the devices described herein communicate according
to now known or future developed pathways including, but not limited to, wired, wireless,
and fiber-optic channels.
[0053] In one or more examples of embodiments, data may be stored remotely (and retrieved
by the application) or may be stored locally on a user's device in a suitable storage
medium. Data storage may be in volatile or non-volatile memory. Data may be stored
in appropriate computer-readable medium including read-only memory, random-access
memory, CD-ROM, CD-R, CD-RW, magnetic tapes, flash drives, as well as other optical
data storage devices. Data may be stored and transmitted by and within the system
in any suitable form. Any source code or other language suitable for accomplishing
the desired functions described herein may be acceptable for use.
[0054] Furthermore, the computer or computers or portable electronic devices may be operatively
or functionally connected to one or more mass storage devices, such as but not limited
to, a hosted database or cloud-based storage.
[0055] The system may also include computer-readable media which may include any computer-readable
media or medium that may be used to carry or store desired program code that may be
accessed by a computer. The invention can also be embodied as computer-readable code
on a computer-readable medium. To this end, the computer-readable medium may be any
data storage device that can store data. The computer-readable medium can also be
distributed over a network-coupled computer system so that the computer-readable code
is stored and executed in a distributed fashion.
[0056] In the following, some aspects of the present invention are summarized:
Aspect 1: A battery longevity predictor comprising:
- a plurality of battery factors;
- a plurality of electrical load factors;
- a plurality of cycling or crank data;
- an output;
wherein the output comprises a battery longevity predictor based on the plurality
of battery factors, plurality of vehicle loads, and the plurality of cycling or crank
data.
Aspect 2: The battery longevity predictor of Aspect 1, further comprising a battery simulator
having the plurality of battery factors, the plurality of vehicle loads, and/or the
plurality of cycling or crank data.
Aspect 3: The battery longevity predictor of Aspect 1, wherein the electrical load factors
comprise driver factors.
Aspect 4: The battery longevity predictor of Aspect 3, wherein the driver factors comprise
driving patterns and driving context.
Aspect 5: The battery longevity predictor of Aspect 1, wherein the electrical load factors
comprise environmental factors.
Aspect 6: The battery longevity predictor of Aspect 2, wherein the battery simulator comprises
a vehicle simulation and performance analysis.
Aspect 7: A vehicle comprising:
- a vehicle system having a system having a number of loads defining a load profile;
- a validated battery comprising one or more batteries which can fulfill the load profile;
- an integrated battery selected from the validated battery, the integrated battery
selected for longevity relative to other batteries;
wherein the validated battery is provided within the vehicle.
Aspect 8: The vehicle of Aspect 7, wherein the load profile comprises battery size.
Aspect 9: The vehicle of Aspect 7, wherein the load profile comprises environmental factors.
Aspect 10: The vehicle of Aspect 7, wherein the load profile comprises driver factors.
Aspect 11: The vehicle of Aspect 7, wherein the load profile comprises vehicle loads.
Aspect 12: The vehicle of Aspect 7, wherein longevity is evaluated relative to a number of factors,
which may include Amp-hr throughput over time, average and peak current over time,
state of charge over time, depth of discharge over time, and Fuel Economy.
Aspect 13: A battery selector comprising:
- a plurality of battery factors;
- a plurality of electrical load factors;
- a plurality of cycling or crank data;
- an output;
wherein the output comprises a battery selection based on the plurality of battery
factors, plurality of vehicle loads, and the plurality of cycling or crank data.
Aspect 14: The battery selector of Aspect 13, further comprising a battery simulator having
the plurality of battery factors, the plurality of vehicle loads, and/or the plurality
of cycling or crank data.
Aspect 15: The battery selector of Aspect 13, wherein the electrical load factors comprise driver
factors.
Aspect 16: The battery selector of Aspect 15, wherein the driver factors comprise driving patterns
and driving context.
Aspect 17: The battery selector of Aspect 13, wherein the electrical load factors comprise environmental
factors.
Aspect 18: The battery selector of Aspect 14, wherein the battery simulator comprises a vehicle
simulation and performance analysis.
Aspect 19: The battery selector of Aspect 13, further comprising a display, wherein the display
shows the battery selection.
Aspect 20: The battery selector of Aspect 15, wherein the driver factors comprise user input
driver factors.
1. A battery selector comprising:
- a plurality of battery factors;
- a plurality of electrical load factors;
- a plurality of cycling or crank data;
- an output (509);
wherein the output (509) comprises a battery selection based on the plurality of battery
factors, plurality of vehicle loads, and the plurality of cycling or crank data.
2. The battery selector of claim 1,
further comprising a battery simulator having the plurality of battery factors, the
plurality of vehicle loads, and/or the plurality of cycling or crank data, wherein
the battery selector is particularly configured to select a battery from a battery
group based on the output (509) of the battery simulator, wherein the battery simulator
preferably comprises a vehicle simulation and performance analysis.
3. The battery selector of claim 2,
wherein the battery simulator has:
- a plurality of battery factors (505), wherein the battery factors (505) comprise
battery types and/or battery functionality;
- a plurality of electrical load factors (203, 503), wherein the electrical load factors
(203, 503) comprise driver factors (202) and environmental factors (200), wherein
the driver factors (202) comprise driving patterns and driving context;
- a plurality of cycling or crank data (507);
wherein the battery simulator is configured to use the plurality of battery factors
(505), the plurality of electrical load factors (203, 503), and the plurality of cycling
or crank data (507) to create a vehicle simulation (359) and performance analysis
(371) of the battery; and
wherein the battery simulator further comprises an output (509) based on the vehicle
simulation (359) and performance analysis (371), the output (509) comprising a battery
recommendation or feedback to a user regarding battery longevity.
4. The battery selector of claim 3, comprising a plurality of influencing factors (233)
comprising vehicle data, automotive enhancements, and/or load management strategy
used by the battery simulator.
5. The battery selector of claim 4,
wherein the vehicle data includes vehicle type (411).
6. The battery selector of claim 3 or 4,
wherein the load management strategy is a load profile comprising a vehicle load,
including size, user impact, load, and/or battery management system.
7. The battery selector of one of claims 3 to 6,
wherein the environmental factors (200) include ambient temperature, under vehicle
hood temperature, humidity road condition, and/or battery placement in vehicle (103,
555).
8. The battery selector of one of claims 3 to 7,
wherein the plurality of electrical load factors (203, 503) is obtained from a general
repository of electrical load factors (203, 503).
9. The battery selector of one of claims 3 to 8,
wherein the output (509) is delivered at an interface at a point of sale or operational
tool.
10. The battery selector of claim 9,
wherein the interface is a display (511); and/or
wherein the operational tool is a business management tool for warranty planning.
11. The battery selector of one of claims 1 to 10,
wherein the electrical load factors comprise driver factors, wherein the driver factors
preferably comprise driving patterns and driving context, and/or wherein the driver
factors preferably comprise user input driver factors.
12. The battery selector of one of claims 1 to 11,
wherein the electrical load factors comprise environmental factors.
13. The battery selector of one of claims 1 to 12,
further comprising a display, wherein the display shows the battery selection.
14. A vehicle (103, 555) comprising:
- a vehicle system having the battery selector of one of claims 1 to 13 having a number
of loads defining a load profile;
- a validated battery comprising one or more batteries which can fulfil the load profile;
- an integrated battery (557) selected from the validated battery, the integrated
battery (557) selected for longevity relative to other batteries;
wherein the integrated battery (557) is provided within the vehicle (103, 555).
15. The vehicle (103, 555) of claim 14,
wherein the load profile comprises battery size, and/or environmental factors (200),
and/or driver factors (202), and/or vehicle loads (559); and/or
wherein longevity is evaluated relative to a number of factors, which may include
Amp-hr throughput over time, average and peak current over time, state of charge over
time, depth of discharge over time, and Fuel Economy.